English

$L^\gamma$-PageRank for Semi-Supervised Learning

Social and Information Networks 2019-03-15 v1 Machine Learning Signal Processing Machine Learning

Abstract

PageRank for Semi-Supervised Learning has shown to leverage data structures and limited tagged examples to yield meaningful classification. Despite successes, classification performance can still be improved, particularly in cases of fuzzy graphs or unbalanced labeled data. To address such limitations, a novel approach based on powers of the Laplacian matrix LγL^\gamma (γ>0\gamma > 0), referred to as LγL^\gamma-PageRank, is proposed. Its theoretical study shows that it operates on signed graphs, where nodes belonging to one same class are more likely to share positive edges while nodes from different classes are more likely to be connected with negative edges. It is shown that by selecting an optimal γ\gamma, classification performance can be significantly enhanced. A procedure for the automated estimation of the optimal γ\gamma, from a unique observation of data, is devised and assessed. Experiments on several datasets demonstrate the effectiveness of both LγL^\gamma-PageRank classification and the optimal γ\gamma estimation.

Keywords

Cite

@article{arxiv.1903.06007,
  title  = {$L^\gamma$-PageRank for Semi-Supervised Learning},
  author = {Esteban Bautista and Patrice Abry and Paulo Gonçalves},
  journal= {arXiv preprint arXiv:1903.06007},
  year   = {2019}
}

Comments

Submitted to Applied Network Science (special issue on machine learning with graphs)

R2 v1 2026-06-23T08:08:07.636Z